Models of Perceptual Learning in Vernier Hyperacuity
Yair Weiss, Shimon Edelman and Manfred Fahle
Performance of human subjects in a wide variety of early visual processing
tasks improves with practice. HyperBF networks (Poggio and Girosi 1990)
constitute a mathematically wellfounded framework for understanding such
improvement in performance, or perceptual learning, in the class of tasks
known as visual hyperacuity. The present article concentrates on two issues
raised by the recent psychophysical and computational findings reported
in Poggio et al. (1992b) and Fahle and Edelman (1992). First, we develop
a biologically plausible extension of the HyperBF model that takes into
account basic features of the functional architecture of early vision. Second,
we explore various learning modes that can coexist within the HyperBF framework
and focus on two unsupervised learning rules that may be involved in hyperacuity
learning. Finally, we report results of psychophysical experiments that
are consistent with the hypothesis that activitydependent presynaptic amplification
may be involved in perceptual learning in hyperacuity.